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DOI: 10.18413/2518-1092-2019-4-2-0-4

THE DECISION OF THE TASK OF CLASSIFICATION OF HUMAN BRAIN PATHOLOGIES ON MRI IMAGES

The article discusses the methods of classification of MRI images of the human brain. The methods are trained binary classifiers to determine the presence or absence of a high stage of brain pathologies. The study aims to identify the best classification method on the processed BRATS data set. We analyzed three classification methods: image classification by basic contour primitives, a method based on a convolutional neural network, with a binary classifier, and a classification method based on a convolutional pretrained neural network Xception. The paper shows that the use of pre-trained neural convolutional networks allows to reduce the time for calculating the time and resources of a computer system for training a neural network. The results of a computational experiment are presented and it is shown that the best accuracy in solving the problem of pathology classification in MRI scans of the human brain is achieved using the Xception neural convolutional pre-trained neural network.

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